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Automated Diagnosis Coding with Combined Text Representations.

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Automated diagnosis coding can be provided efficiently by learning predictive models from historical data; however, discriminating between thousands of codes while allowing a variable number of codes to be assigned… Click to show full abstract

Automated diagnosis coding can be provided efficiently by learning predictive models from historical data; however, discriminating between thousands of codes while allowing a variable number of codes to be assigned is extremely difficult. Here, we explore various text representations and classification models for assigning ICD-9 codes to discharge summaries in MIMIC-III. It is shown that the relative effectiveness of the investigated representations depends on the frequency of the diagnosis code under consideration and that the best performance is obtained by combining models built using different representations.

Keywords: diagnosis; combined text; text representations; automated diagnosis; coding combined; diagnosis coding

Journal Title: Studies in health technology and informatics
Year Published: 2017

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